TL;DR
This paper introduces deep graphs, a comprehensive framework that unifies and extends existing network models to explicitly represent heterogeneous objects, relations, and multi-scale group interactions in complex systems.
Contribution
The paper presents a novel framework called deep graphs that generalizes existing network representations by incorporating heterogeneous properties and multi-scale group interactions.
Findings
Unified framework for heterogeneous network analysis
Enhanced representation of multi-scale group interactions
Application demonstrated on real-world precipitation data
Abstract
Network theory has proven to be a powerful tool in describing and analyzing systems by modelling the relations between their constituent objects. In recent years great progress has been made by augmenting `traditional' network theory. However, existing network representations still lack crucial features in order to serve as a general data analysis tool. These include, most importantly, an explicit association of information with possibly heterogeneous types of objects and relations, and a conclusive representation of the properties of groups of nodes as well as the interactions between such groups on different scales. In this paper, we introduce a collection of definitions resulting in a framework that, on the one hand, entails and unifies existing network representations (e.g., network of networks, multilayer networks), and on the other hand, generalizes and extends them by…
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